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Recent Temporal Pattern Mining for Septic Shock Early Prediction

机译:最近的时间模式挖掘用于脓毒症休克早期预测

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Sepsis is a leading cause of in-hospital death over the world and septic shock, the most severe complication of sepsis, reaches a mortality rate as high as 50%. Early diagnosis and treatment can prevent most morbidity and mortality. In this work, Recent Temporal Patterns (RTPs) are used in conjunction with SVM classifier to build a robust yet interpretable model for early diagnosis of septic shock. This model is applied to two different prediction tasks: visit-level early diagnosis and event-level early prediction. For each setting, this model is compared against several strong baselines including atemporal method called Last-Value, six classic machine learning algorithms, and lastly, a state-of-the-art deep learning model: Long Short-Term Memory (LSTM). Our results suggest that RTP-based model can outperform all aforementioned baseline models for both diagnosis tasks. More importantly, the extracted interpretative RTPs can shed lights for the clinicians to discover progression behavior and latent patterns among septic shock patients.
机译:败血症是全世界医院内死亡的主要原因,败血症最严重的并发症就是败血性休克,其死亡率高达50%。早期诊断和治疗可以预防大多数发病和死亡。在这项工作中,最近的时间模式(RTP)与SVM分类器结合使用,以建立一个强大而可解释的模型,用于败血性休克的早期诊断。该模型适用于两个不同的预测任务:访问级别的早期诊断和事件级别的早期预测。对于每种设置,都会将该模型与几个强大的基准进行比较,其中包括称为Last-Value的临时方法,六种经典的机器学习算法以及最先进的深度学习模型:长期短期记忆(LSTM)。我们的结果表明,基于RTP的模型在两个诊断任务上都可以胜过所有上述基准模型。更重要的是,提取的解释性RTP可以为临床医生揭示出败血症性休克患者的进展行为和潜伏模式。

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